Riemannian Proximal Sampler for High-Accuracy Sampling on Manifolds

Abstract

We introduce the \textit{Riemannian Proximal Sampler}, a method for sampling from densities defined on Riemannian manifolds. The performance of this sampler critically depends on two key oracles: the \textit{Manifold Brownian Increments (MBI)} oracle and the \textit{Riemannian Heat-kernel (RHK)} oracle. We establish high-accuracy sampling guarantees for the Riemannian Proximal Sampler, showing that generating samples with \(\varepsilon\)-accuracy requires \(\mathcal{O}(\log(1/\varepsilon))\) iterations in Kullback-Leibler divergence assuming access to exact oracles and \(\mathcal{O}(\log^2(1/\varepsilon))\) iterations in the total variation metric assuming access to sufficiently accurate inexact oracles. Furthermore, we present practical implementations of these oracles by leveraging heat-kernel truncation and Varadhan’s asymptotics. In the latter case, we interpret the Riemannian Proximal Sampler as a discretization of the entropy-regularized Riemannian Proximal Point Method on the associated Wasserstein space. We provide preliminary numerical results that illustrate the effectiveness of the proposed methodology.

Cite

Text

Guan et al. "Riemannian Proximal Sampler for High-Accuracy Sampling on Manifolds." Advances in Neural Information Processing Systems, 2025.

Markdown

[Guan et al. "Riemannian Proximal Sampler for High-Accuracy Sampling on Manifolds." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/guan2025neurips-riemannian/)

BibTeX

@inproceedings{guan2025neurips-riemannian,
  title     = {{Riemannian Proximal Sampler for High-Accuracy Sampling on Manifolds}},
  author    = {Guan, Yunrui and Balasubramanian, Krishna and Ma, Shiqian},
  booktitle = {Advances in Neural Information Processing Systems},
  year      = {2025},
  url       = {https://mlanthology.org/neurips/2025/guan2025neurips-riemannian/}
}